Toggle light / dark theme

A trio of researchers, two with Princeton University, the other the Max Planck Institute for Biological Cybernetics, has developed a reinforcement learning–based simulation that shows the human desire always to want more may have evolved as a way to speed up learning. In their paper posted in the open-access PLOS Computational Biology, Rachit Dubey, Thomas Griffiths and Peter Dayan describe the factors that went into their simulations.

Researchers studying have often been puzzled by people’s seemingly contradictory desires. Many people have an unceasing desire for more of certain things, even though they know that meeting those desires may not result in the desired outcome. Many people want more and more money, for example, with the idea that more money would make life easier, which should make them happier. But a host of studies has shown that making more money rarely makes people happier (with the exception of those starting from a very low income level). In this new effort, the researchers sought to better understand why people would have evolved this way. To that end, they built a simulation to mimic the way humans respond emotionally to stimuli, such as achieving goals. And to better understand why people might feel the way they do, they added checkpoints that could be used as a happiness barometer.

The simulation was based on , in which people (or a machine) continue doing things that offer a positive reward and cease doing things that offer no reward or a negative reward. The researchers also added simulated to the known negative impacts of habituation and comparison, whereby people become less happy over time as they get used to something new and become less happy when seeing that someone else has more of something they want.

Meanwhile, Taiwan’s Presidential Palace said cyberattack traffic on its website spiked by 200 times hours before Nancy Pelosi’s arrival in Taipei.


Bill Gates-founded Breakthrough Energy Ventures co-led a $44 million funding round for a startup that aims to accelerate solar far construction.

Bill Gates-founded Breakthrough Energy Ventures co-led a $44 million funding round for a startup that aims to accelerate solar far construction.


Breakthrough Energy Ventures, a climate change solution-focused VC firm backed by the likes of Bill Gates, has joined a $44 million backing of solar startup Terabase Energy, a press statement reveals.

The VC firm co-led the Terabase deal alongside investor Prelude Ventures, and is known for its backing of Amp Robotics and Lime. The round brings Terabase Energy’s total funding to $52 million.

(Reuters) — An artificial intelligence system cannot be an inventor under United States patent law, a U.S. appeals court affirmed Friday.

The Patent Act requires an “inventor” to be a natural person, the U.S. Court of Appeals for the Federal Circuit said, rejecting computer scientist Stephen Thaler’s bid for patents on two inventions he said his DABUS system created.

Thaler said in an email Friday that DABUS, which stands for “Device for the Autonomous Bootstrapping of Unified Sentience,” is “natural and sentient.”

Another version of the PCP theorem, not yet proved, specifically deals with the quantum case. Computer scientists suspect that the quantum PCP conjecture is true, and proving it would change our understanding of the complexity of quantum problems. It’s considered arguably the most important open problem in quantum computational complexity theory. But so far, it’s remained unreachable.

Nine years ago, two researchers identified an intermediate goal to help us get there. They came up with a simpler hypothesis, known as the “no low-energy trivial state” (NLTS) conjecture, which would have to be true if the quantum PCP conjecture is true. Proving it wouldn’t necessarily make it any easier to prove the quantum PCP conjecture, but it would resolve some of its most intriguing questions.

Then in June of 2022, in a paper posted to the scientific preprint site arxiv.org, three computer scientists proved the NLTS conjecture. The result has striking implications for computer science and quantum physics.

One of the cornerstones of the implementation of quantum technology is the creation and manipulation of the shape of external fields that can optimize the performance of quantum devices. Known as quantum optimal control, this set of methods comprises a field that has rapidly evolved and expanded over recent years.

A new review paper published in EPJ Quantum Technology and authored by Christiane P. Koch, Dahlem Center for Complex Quantum Systems and Fachbereich Physik, Freie Universität Berlin along with colleagues from across Europe assesses recent progress in the understanding of the controllability of quantum systems as well as the application of quantum control to quantum technologies. As such, it lays out a potential roadmap for future .

While quantum optimal control builds on conventional control theory encompassing the interface of applied mathematics, engineering, and physics, it must also factor in the quirks and counter-intuitive nature of quantum physics.

DNA-based information is a new interdisciplinary field linking information technology and biotechnology. The field hopes to meet the enormous need for long-term data storage by using DNA as an information storage medium. Despite DNA’s promise of strong stability, high storage density and low maintenance cost, however, researchers face problems accurately rewriting digital information encoded in DNA sequences.

Generally, DNA data storage technology has two modes, i.e., the “in vitro hard disk mode” and the “in vivo CD mode.” The primary advantage of the in vivo mode is its low-cost, reliable replication of chromosomal DNA by cell replication. Due to this characteristic, it can be used for rapid and low-cost data copy dissemination. Since encoded DNA sequences for some information contain a large number of repeats and the appearance of homopolymers, however, such information can only be “written” and “read,” but cannot be accurately “rewritten.”

To solve the rewriting problem, Prof. Liu Kai from the Department of Chemistry, Tsinghua University, Prof. LI Jingjing from the Changchun Institute of Applied Chemistry (CIAC) of the Chinese Academy of Sciences, and Prof. Chen Dong from Zhejiang University led a research team that recently developed a dual-plasmid editing system for accurately processing in a microbial vector. Their findings were published in Science Advances.